Analyzing the learning behavior patterns of business english learners using deep learning technology

IF 3.6
Xiaohui Zeng
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引用次数: 0

Abstract

This study employs deep learning technology to conduct a comprehensive analysis and prediction of learning behavior patterns among business English learners, making several innovative contributions. First, it applies a hybrid deep learning approach, integrating Convolutional Neural Networks (CNN) and Recurrent Neural Networks (RNN), to model both static and temporal aspects of learning behaviors. Second, the study identifies novel patterns, such as the strong correlation between high-frequency evening study sessions and improved academic performance, providing data-driven insights into effective learning strategies. Third, it demonstrates the feasibility of leveraging deep learning to dynamically adjust learning paths and offer real-time personalized learning recommendations, significantly enhancing learner engagement and outcomes. These findings lay the groundwork for integrating deep learning into intelligent education systems and highlight its potential to revolutionize personalized learning in the field of business English education.
运用深度学习技术分析商务英语学习者的学习行为模式
本研究运用深度学习技术对商务英语学习者的学习行为模式进行了全面的分析和预测,做出了若干创新贡献。首先,它采用混合深度学习方法,集成卷积神经网络(CNN)和循环神经网络(RNN),对学习行为的静态和时间方面进行建模。其次,该研究发现了新的模式,例如高频夜间学习与提高学习成绩之间的强相关性,为有效的学习策略提供了数据驱动的见解。第三,它证明了利用深度学习动态调整学习路径和提供实时个性化学习建议的可行性,显著提高了学习者的参与度和学习成果。这些发现为将深度学习整合到智能教育系统中奠定了基础,并突出了其在商务英语教育领域彻底改变个性化学习的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
2.20
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